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Application of K-means Clustering Algorithms in Optimizing Logistics Distribution Routes

机译:K均值聚类算法在物流配送路径优化中的应用

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With the development of information technology and the arrival of the era of big data, China's logistics industry has been developing rapidly, especially in modern logistics management information system, In order to make full use of all kinds of resources and reduce logistics cost, this project extensively applies various information technologies related to mechanical learning. Taking the logistics distribution system of YifengWeiye Group as the research object, this paper puts forward the theory of K-means clustering algorithm and mileage-saving algorithm, adopts the idea of spatial clustering analysis regionalization, applies Python technology to process the special attribute data of transportation contained in the process of logistics distribution, and applies entity recognition technology based on attribute value partitioning algorithm and K-means clustering algorithm to realize the data area.
机译:随着信息技术的发展和大数据时代的到来,中国物流业发展迅速,特别是在现代物流管理信息系统中,为了充分利用各种资源并降低物流成本,本项目广泛应用与机械学习有关的各种信息技术。本文以宜丰伟业集团的物流配送系统为研究对象,提出了K-means聚类算法和里程节省算法的理论,采用空间聚类分析区域化的思想,运用Python技术对物流的特殊属性数据进行处理。运输包含在物流配送过程中,并应用基于属性值划分算法和K-means聚类算法的实体识别技术来实现数据区域。

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